Top 10 Computer Vision Papers of 2021
Last Updated on July 26, 2023 by Editorial Team
Author(s): Louis Bouchard
Originally published on Towards AI.
The top 10 computer vision papers in 2021 with video demos, articles, code, and paper reference.

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While the world is still recovering, research hasn’t slowed its frenetic pace, especially in the field of artificial intelligence. More, many important aspects were highlighted this year, like the ethical aspects, important biases, governance, transparency, and much more. Artificial intelligence and our understanding of the human brain and its link to AI are constantly evolving, showing promising applications improving our life’s quality in the near future. Still, we ought to be careful with which technology we choose to apply.
“Science cannot tell us what we ought to do, only what… Read the full blog for free on Medium.
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